124207 - qualcommrb3gen2 tflite
124207 - qualcommrb3gen2 tflite
Summary: Pipeline succeeded and valid report was generated.
Model Details
- model name : mobilenet_v2_0.35_224_tl_int8.tflite
- model url : Download here
Logs Details
user.log
[33mINFO: Created TensorFlow Lite delegate for GPU. [0m
[33mW/Adreno-GSL (36200,36200): <os_lib_map:1488>: os_lib_map error: libadreno_app_profiles.so: cannot open shared object file: No such file or directory, on 'libadreno_app_profiles.so' [0m
[33mW/Adreno-CB (36200,36200): <cl_app_profiles_initialize:104>: Failed to load the app profiles library libadreno_app_profiles.so! [0m
[33mINFO: Initialized OpenCL-based API. [0m
[33mINFO: Created 1 GPU delegate kernels. [0merror.log
Report Details
report.json
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